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机器学习算法在识别和分类巴西农民因接触农药和/或吸烟而导致的听力损伤方面的性能。

Performance of machine-learning algorithms to pattern recognition and classification of hearing impairment in Brazilian farmers exposed to pesticide and/or cigarette smoke.

机构信息

Graduate Program in Environment and Regional Development, University of Western São Paulo - UNOESTE, Presidente Prudente, SP, Brazil.

Faculty of Health Sciences, University of Western São Paulo - UNOESTE, Presidente Prudente, SP, Brazil.

出版信息

Environ Sci Pollut Res Int. 2019 Mar;26(7):6481-6491. doi: 10.1007/s11356-018-04106-w. Epub 2019 Jan 8.

DOI:10.1007/s11356-018-04106-w
PMID:30623325
Abstract

The use of pesticides has been increasing in agriculture, leading to a public health problem. The aim of this study was to evaluate ototoxic effects in farmers who were exposed to cigarette smoke and/or pesticides and to identify possible classification patterns in the exposure groups. The sample included 127 participants of both sexes aged between 18 and 39, who were divided into the following four groups: control group (CG), smoking group (SG), pesticide group (PG), and smoking + pesticide group (SPG). Meatoscopy, pure tone audiometry, logoaudiometry, high-frequency thresholds, and immittance testing were performed. Data were evaluated by artificial neural network (ANN), K-nearest neighbors (K-NN), and support vector machine (SVM). There was symmetry between the right and left ears, an increase in the incidence of hearing loss at high frequency and of downward sloping audiometric curve configuration, and alteration of stapedial reflex in the three exposed groups. The machine-learning classifiers achieved good classification performance (control and exposed). The best classification results occur in high type (I and II) datasets (about 90% accuracy) in k-NN test. It is concluded that both xenobiotic substances have ototoxic potential; however, their combined use does not present additive or potentiating effects recognizable by the algorithms.

摘要

农药在农业中的使用不断增加,导致了一个公共卫生问题。本研究旨在评估接触香烟烟雾和/或农药的农民的耳毒性作用,并确定暴露组中可能的分类模式。该样本包括 127 名年龄在 18 至 39 岁之间的男女参与者,他们被分为以下四个组:对照组 (CG)、吸烟组 (SG)、农药组 (PG) 和吸烟+农药组 (SPG)。进行了耳镜检查、纯音听力测试、言语听力测试、高频阈值和导抗测试。数据通过人工神经网络 (ANN)、K-最近邻 (K-NN) 和支持向量机 (SVM) 进行评估。右耳和左耳之间存在对称性,高频听力损失和听力曲线向下倾斜的发生率增加,以及三个暴露组的镫骨反射改变。机器学习分类器在控制组和暴露组中均取得了良好的分类性能。在 K-NN 测试中,高类型 (I 和 II) 数据集的分类结果最好 (约 90%的准确率)。结论是这两种外来物质都有耳毒性潜力;然而,它们的联合使用并没有通过算法识别出附加或增强作用。

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